Getting Started with NVIDIA GPUs: A Beginner’s Guide to AI Acceleration with python, C++ and Cuda

$28.99
by Derek Lloyd

Shop Now
Unlock the Real Power of Your NVIDIA GPU — Build, Accelerate, and Deploy Modern AI Systems Modern AI runs on one engine: the GPU. Whether you're training neural networks, running LLMs, building computer-vision models, or fine-tuning transformers, this beginner-friendly guide shows you exactly how to turn your NVIDIA GPU into a high-performance AI workstation. This book cuts through confusing documentation, version conflicts, and setup failures, and shows you step-by-step how to set up drivers, CUDA, cuDNN, environments, and deep learning frameworks the right way. What This Book Allows You to Do Install and configure NVIDIA GPUs with confidence - Understand CUDA Cores, Tensor Cores, RT Cores, and how they impact AI - Train deep learning and computer vision models on your own machine - Run LLMs locally using PyTorch, Transformers, and quantization - Optimize models for maximum speed using TensorRT, ONNX, and mixed precision - Deploy AI workloads from desktop to edge devices like Jetson About the Technology NVIDIA GPUs are the backbone of modern AI, supporting advanced parallel computation, matrix math acceleration, and massive throughput required for deep learning. Technologies like CUDA, cuDNN, TensorRT, and NGC containers form the essential toolkit for building high-performance AI systems. This book demystifies them with hands-on labs, simple explanations, and real engineering workflows. Book Summary This guide begins at the silicon level, explaining CUDA cores, memory bandwidth, Tensor Cores, and architectural generations from Pascal to Blackwell, so you truly understand the hardware powering your AI stack. From there, you learn how to install drivers, configure CUDA, set up cuDNN, and build clean environments in Python, Docker, and NGC. The second half of the book turns theory into action. You'll train models, accelerate them, optimize for speed, deploy object detection systems, fine-tune LLMs, use mixed precision, and operate real-time inference pipelines. Whether you're a beginner or a self-taught developer, this book takes you from setup to full AI engineering capability using tools used by real-world professionals. What’s Inside This Book? Clear hardware fundamentals: CUDA Cores, Tensor Cores, VRAM, bandwidth, architectures - Driver & CUDA setup without the headaches: avoid the Linux/Nouveau pitfalls - Hands-on CUDA C++ examples: write real GPU kernels step-by-step - Deep Learning with PyTorch: tensors, training loops, mixed precision, dataloaders - Computer Vision workflows: ResNet, EfficientNet, YOLO, augmentation, fine-tuning - LLM & NLP engineering: Transformers, quantization (4-bit, 8-bit), LoRA - Generative AI workflows: diffusion models, xFormers, ComfyUI, A1111 - Model optimization & deployment: TensorRT, ONNX Runtime, Triton Server - Edge AI engineering: Jetson devices, power constraints, deployment pipelines About the Reader This book is written for beginners, self-learners, students, and developers who want to understand and fully utilize their NVIDIA GPU for AI. No advanced math or prior deep learning knowledge is required, only basic command-line familiarity and the desire to build real AI systems on your own machine. If you're ready to unlock the true power of your NVIDIA GPU and build AI systems with confidence, scroll up and get your copy today. Your journey into accelerated computing starts now.

Customer Reviews

No ratings. Be the first to rate

 customer ratings


How are ratings calculated?
To calculate the overall star rating and percentage breakdown by star, we don’t use a simple average. Instead, our system considers things like how recent a review is and if the reviewer bought the item on Amazon. It also analyzes reviews to verify trustworthiness.

Review This Product

Share your thoughts with other customers